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Presenting MonoNeRF at #ICML2023 We train a generalizable NeRF from: ✅Large-scale monocular videos instead of one scene ✅No GT camera poses.📷🚫 Without per-scene optimization, the model can do view synthesis, depth estimation, camera pose estimation.

36,578 просмотров • 3 лет назад •via X (Twitter)

Комментарии: 8

Фото профиля Xiaolong Wang
Xiaolong Wang3 лет назад

This work is extending from our previous work on Video Autoencoder, but a NeRF version. We firmly believe in the potential of learning 3D geometry from videos without the constraint of camera poses. This is the way to scale up! 2/n

Фото профиля Xiaolong Wang
Xiaolong Wang3 лет назад

Even trained without camera poses, it can still be used for camera pose estimation. 3/n

Фото профиля Xiaolong Wang
Xiaolong Wang3 лет назад

This is a joint effort with my student Yang Fu (@yangfu21) and old friend Ishan Misra (@imisra_). Looking forward to catching up in ICML. arxiv: 4/n

Фото профиля Yue Wang
Yue Wang3 лет назад

@JiaweiYang118

Фото профиля 69420
694203 лет назад

Can it render in real time?

Фото профиля Jiatao Gu
Jiatao Gu3 лет назад

Amazing work!! Will you release the code & pretrained models soon?

Фото профиля Xiaolong Wang
Xiaolong Wang3 лет назад

Yes. Very soon I think! @yangfu21

Фото профиля Yuliang Zou
Yuliang Zou3 лет назад

Nice work! Not sure if I miss something, I did not find how to set d_i adaptively for each image and how to convert depth encoder features to this multiple nerf representation.

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